rags2ridges-package {rags2ridges} | R Documentation |
Ridge estimation for high-dimensional precision matrices
Description
Package contains proper L2-penalized ML estimators for the precision matrix as well as supporting functions to employ these estimators in a (integrative or meta-analytic) graphical modeling setting.
Details
The main function of the package is ridgeP
which enables
archetypal and proper alternative ML ridge estimation of the precision
matrix. The alternative ridge estimators can be found in van Wieringen and
Peeters (2015) and encapsulate both target and non-target shrinkage for the
multivariate normal precision matrix. The estimators are analytic and enable
estimation in large p
small n
settings. Supporting functions to
employ these estimators in a graphical modeling setting are also given.
These supporting functions enable, a.o., the determination of the optimal
value of the penalty parameter, the determination of the support of a
shrunken precision estimate, as well as various visualization options.
The package has a modular setup. The core module (rags2ridges.R) contains the functionality stated above. The fused module (rags2ridgesFused.R) extends the functionality of the core module to the joint estimation of multiple precision matrices from (aggregated) high-dimensional data consisting of distinct classes. The result is a targeted fused ridge estimator that is of use when the precision matrices of the constituent classes are believed to chiefly share the same structure while potentially differing in a number of locations of interest. The fused module also contains supporting functions for integrative or meta-analytic Gaussian graphical modeling. The third module is the miscellaneous module (rags2RidgesMisc.R) which contains assorted hidden functions.
Function overview core module:
Function for (proper) ridge estimation of the precision matrix
Functions for penalty parameter selection
Functions for loss/entropy/fit evaluation
Functions for block-independence testing
Function for support determination
Functions for (network) visualization
Functions for topology statistics
-
Wrapper function
Support functions
Function overview fused module:
Function for targeted fused ridge estimation of multiple precision matrices
Function for fused penalty parameter selection
Functions for loss/entropy/fit evaluation
Function for testing the necessity of fusion
Function for support determination
Functions for topology statistics
Support functions
Calls of interest to miscellaneous module:
-
rags2ridges:::.TwoCents()
~~(Unsolicited advice) -
rags2ridges:::.Brooke()
~~(Endorsement) -
rags2ridges:::.JayZScore()
~~(The truth) -
rags2ridges:::.theHoff()
~~(Wish) -
rags2ridges:::.rags2logo()
~~(Warm welcome)
Author(s)
Carel F.W. Peeters, Anders Ellern Bilgrau, Wessel, N. van Wieringen
Maintainer: Carel F.W. Peeters <carel.peeters@wur.nl>
References
Peeters, C.F.W., Bilgrau, A.E., and van Wieringen, W.N. (2022). rags2ridges: A One-Stop-l2-Shop for Graphical Modeling of High-Dimensional Precision Matrices. Journal of Statistical Software, vol. 102(4): 1-32.
Bilgrau, A.E., Peeters, C.F.W., Eriksen, P.S., Boegsted, M., and van Wieringen, W.N. (2020). Targeted Fused Ridge Estimation of Inverse Covariance Matrices from Multiple High-Dimensional Data Classes. Journal of Machine Learning Research, 21(26): 1-52. Also available as arXiv:1509.07982v2 [stat.ME].
Peeters, C.F.W., van de Wiel, M.A., & van Wieringen, W.N. (2020). The Spectral Condition Number Plot for Regularization Parameter Evaluation. Computational Statistics, 35: 629-646. Also available as arXiv:1608.04123 [stat.CO].
van Wieringen, W.N. & Peeters, C.F.W. (2016). Ridge Estimation of Inverse Covariance Matrices from High-Dimensional Data. Computational Statistics & Data Analysis, vol. 103: 284-303. Also available as arXiv:1403.0904v3 [stat.ME].
van Wieringen, W.N. & Peeters, C.F.W. (2015). Application of a New Ridge Estimator of the Inverse Covariance Matrix to the Reconstruction of Gene-Gene Interaction Networks. In: di Serio, C., Lio, P., Nonis, A., and Tagliaferri, R. (Eds.) 'Computational Intelligence Methods for Bioinformatics and Biostatistics'. Lecture Notes in Computer Science, vol. 8623. Springer, pp. 170-179.